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Main Authors: Lai, Chengyu, Zhou, Sheng, Jiang, Zhimeng, Tan, Qiaoyu, Bei, Yuanchen, Chen, Jiawei, Zhang, Ningyu, Bu, Jiajun
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.04553
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author Lai, Chengyu
Zhou, Sheng
Jiang, Zhimeng
Tan, Qiaoyu
Bei, Yuanchen
Chen, Jiawei
Zhang, Ningyu
Bu, Jiajun
author_facet Lai, Chengyu
Zhou, Sheng
Jiang, Zhimeng
Tan, Qiaoyu
Bei, Yuanchen
Chen, Jiawei
Zhang, Ningyu
Bu, Jiajun
contents Recommendation systems play a pivotal role in suggesting items to users based on their preferences. However, in online platforms, these systems inevitably offer unsuitable recommendations due to limited model capacity, poor data quality, or evolving user interests. Enhancing user experience necessitates efficiently rectify such unsuitable recommendation behaviors. This paper introduces a novel and significant task termed recommendation editing, which focuses on modifying known and unsuitable recommendation behaviors. Specifically, this task aims to adjust the recommendation model to eliminate known unsuitable items without accessing training data or retraining the model. We formally define the problem of recommendation editing with three primary objectives: strict rectification, collaborative rectification, and concentrated rectification. Three evaluation metrics are developed to quantitatively assess the achievement of each objective. We present a straightforward yet effective benchmark for recommendation editing using novel Editing Bayesian Personalized Ranking Loss. To demonstrate the effectiveness of the proposed method, we establish a comprehensive benchmark that incorporates various methods from related fields. Codebase is available at https://github.com/cycl2018/Recommendation-Editing.
format Preprint
id arxiv_https___arxiv_org_abs_2406_04553
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Better Late Than Never: Formulating and Benchmarking Recommendation Editing
Lai, Chengyu
Zhou, Sheng
Jiang, Zhimeng
Tan, Qiaoyu
Bei, Yuanchen
Chen, Jiawei
Zhang, Ningyu
Bu, Jiajun
Information Retrieval
Artificial Intelligence
Recommendation systems play a pivotal role in suggesting items to users based on their preferences. However, in online platforms, these systems inevitably offer unsuitable recommendations due to limited model capacity, poor data quality, or evolving user interests. Enhancing user experience necessitates efficiently rectify such unsuitable recommendation behaviors. This paper introduces a novel and significant task termed recommendation editing, which focuses on modifying known and unsuitable recommendation behaviors. Specifically, this task aims to adjust the recommendation model to eliminate known unsuitable items without accessing training data or retraining the model. We formally define the problem of recommendation editing with three primary objectives: strict rectification, collaborative rectification, and concentrated rectification. Three evaluation metrics are developed to quantitatively assess the achievement of each objective. We present a straightforward yet effective benchmark for recommendation editing using novel Editing Bayesian Personalized Ranking Loss. To demonstrate the effectiveness of the proposed method, we establish a comprehensive benchmark that incorporates various methods from related fields. Codebase is available at https://github.com/cycl2018/Recommendation-Editing.
title Better Late Than Never: Formulating and Benchmarking Recommendation Editing
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2406.04553